一种用于手势单元分割的极随机树方法

Md Taufeeq Uddin
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引用次数: 0

摘要

自动化人体手势分析在人机交互、运动分析和安全监控等许多先进领域具有广泛的应用前景。然而,由于手势的时空变化和端点定位问题,以及手势根据表演者、主题和表演环节的变化,手势的自动分割仍然是一项非常具有挑战性的任务。本文提出了一种基于Ada-Boost和极端随机树算法的视频流手势单元分割框架。该方法采用Ada-Boost特征选择算法,从大量原始提取的特征中选择紧凑的特征子集,减少了计算时间,提高了手势分割模型的分割率;然后,选择的特征被馈送到一个鲁棒的极度随机树分类器,给定其处理复杂和不平衡数据的能力,以分割手势单元。在公开可用的基准手势分割数据集上进行的实验评估结果表明,所提出的技术比先前应用的技术提高了5.2%的分割度量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An extremely randomized trees approach for gesture unit segmentation
Automated human gestures analysis has a wide range of promising applications in many advanced fields including human-computer interaction, motion analysis, and security surveillance. However, automatic gesture segmentation is still a very challenging task due to the spatio-temporal variation and endpoint localization issues, and the variation of gestures based on performers, topics and performance sessions. This paper presents a novel framework for segmenting gesture unit based on Ada-Boost and extremely randomized trees algorithms from video streams. In this approach, an Ada-Boost feature selection algorithm is applied to select compact feature subsets from the numerous raw extracted features to reduce the computational time as well as to improve the segmentation rate of the gesture segmentation model; then, selected features are fed to a robust extremely randomized trees classifier, given their capability to handle complex and unbalanced data, to segment gesture unit. The evaluation results of the experiments conducted on the publicly available benchmark gesture segmentation data set indicate that the proposed technique improve the segmentation metric by as much as 5.2% over the previously applied techniques.
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